Automated detection of physiologic deterioration in hospitalized patients

Author:

Evans R Scott12,Kuttler Kathryn G13,Simpson Kathy J4,Howe Stephen1,Crossno Peter F3,Johnson Kyle V1,Schreiner Misty N4,Lloyd James F1,Tettelbach William H56,Keddington Roger K7,Tanner Alden4,Wilde Chelbi4,Clemmer Terry P89

Affiliation:

1. Homer Warner Center for Informatics Research, Intermountain Healthcare, Salt Lake City, Utah, USA

2. Biomedical Informatics, University of Utah School of Medicine, Salt Lake City, Utah, USA

3. Pulmonary and Critical Care, Intermountain Medical Center, Murray, Utah, USA

4. Shock Trauma Intensive Care, Intermountain Medical Center, Murray, Utah, USA

5. Hyperbaric Medicine, Wound Care & Infectious Diseases, Intermountain Healthcare, Salt Lake City, Utah, USA

6. Department of Anesthesiology, Duke University School of Medicine, Durham, North Carolina, USA

7. Intensive Medicine/Emergency Services, Intermountain Healthcare, Salt Lake City, Utah, USA

8. Critical Care Medicine, LDS Hospital, Salt Lake City, Utah, USA

9. Department of Medicine, University of Utah School of Medicine, Salt Lake City, Utah, USA

Abstract

Abstract Objective Develop and evaluate an automated case detection and response triggering system to monitor patients every 5 min and identify early signs of physiologic deterioration. Materials and methods A 2-year prospective, observational study at a large level 1 trauma center. All patients admitted to a 33-bed medical and oncology floor (A) and a 33-bed non-intensive care unit (ICU) surgical trauma floor (B) were monitored. During the intervention year, pager alerts of early physiologic deterioration were automatically sent to charge nurses along with access to a graphical point-of-care web page to facilitate patient evaluation. Results Nurses reported the positive predictive value of alerts was 91–100% depending on erroneous data presence. Unit A patients were significantly older and had significantly more comorbidities than unit B patients. During the intervention year, unit A patients had a significant increase in length of stay, more transfers to ICU (p = 0.23), and significantly more medical emergency team (MET) calls (p = 0.0008), and significantly fewer died (p = 0.044) compared to the pre-intervention year. No significant differences were found on unit B. Conclusions We monitored patients every 5 min and provided automated pages of early physiologic deterioration. This before–after study found a significant increase in MET calls and a significant decrease in mortality only in the unit with older patients with multiple comorbidities, and thus further study is warranted to detect potential confounding. Moreover, nurses reported the graphical alerts provided information needed to quickly evaluate patients, and they felt more confident about their assessment and more comfortable requesting help.

Publisher

Oxford University Press (OUP)

Subject

Health Informatics

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